7

I have a rolling sum calculated on a grouped data frame but its adding up the wrong way, it is a sum of the future, when I need a sum of the past.

What am I doing wrong here?

I import the data and sort by Dimension and Date (I have tried removing the date sort already)

df = pd.read_csv('Input.csv', parse_dates=True)
df.sort_values(['Dimension','Date'])
print(df)

I then create a new column which is a multi index grouped by rolling window

new_column = df.groupby('Dimension').Value1.apply(lambda x: 
x.rolling(window=3).sum())

I then reset the index to be the same as the original

df['Sum_Value1'] = new_column.reset_index(level=0, drop=True)
print(df)

I have also tried reversing the index before the calculation, but that also failed.

Input

Dimension,Date,Value1,Value2
1,4/30/2002,10,20
1,1/31/2002,10,20
1,10/31/2001,10,20
1,7/31/2001,10,20
1,4/30/2001,10,20
1,1/31/2001,10,20
1,10/31/2000,10,20
2,4/30/2002,10,20
2,1/31/2002,10,20
2,10/31/2001,10,20
2,7/31/2001,10,20
2,4/30/2001,10,20
2,1/31/2001,10,20
2,10/31/2000,10,20
3,4/30/2002,10,20
3,1/31/2002,10,20
3,10/31/2001,10,20
3,7/31/2001,10,20
3,1/31/2001,10,20
3,10/31/2000,10,20

Output:

    Dimension        Date  Value1  Value2  Sum_Value1
0           1   4/30/2002      10      20         NaN
1           1   1/31/2002      10      20         NaN
2           1  10/31/2001      10      20        30.0
3           1   7/31/2001      10      20        30.0
4           1   4/30/2001      10      20        30.0
5           1   1/31/2001      10      20        30.0
6           1  10/31/2000      10      20        30.0
7           2   4/30/2002      10      20         NaN
8           2   1/31/2002      10      20         NaN
9           2  10/31/2001      10      20        30.0
10          2   7/31/2001      10      20        30.0
11          2   4/30/2001      10      20        30.0
12          2   1/31/2001      10      20        30.0
13          2  10/31/2000      10      20        30.0

Goal Output:

    Dimension        Date  Value1  Value2  Sum_Value1
0           1   4/30/2002      10      20        30.0
1           1   1/31/2002      10      20        30.0
2           1  10/31/2001      10      20        30.0
3           1   7/31/2001      10      20        30.0
4           1   4/30/2001      10      20        30.0
5           1   1/31/2001      10      20         NaN
6           1  10/31/2000      10      20         NaN
7           2   4/30/2002      10      20        30.0
8           2   1/31/2002      10      20        30.0
9           2  10/31/2001      10      20        30.0
10          2   7/31/2001      10      20        30.0
11          2   4/30/2001      10      20        30.0
12          2   1/31/2001      10      20         Nan
13          2  10/31/2000      10      20         NaN
4

You can shift the result by window-1 to get the left aligned results:

df["sum_value1"] = (df.groupby('Dimension').Value1
                      .apply(lambda x: x.rolling(window=3).sum().shift(-2)))

enter image description here

3
  • I think you're misled by constant values in OP's example, but the need is to do a reverse sum – Boud Mar 29 '17 at 18:57
  • @Boud I did overlook that part. But I think this still gives the correct result coincidently :). As really, the past or future here is just where you put the sum results if the data is sorted by Date. Or maybe OP just needs to sort the data frame by Date in ascending order initially. – Psidom Mar 29 '17 at 19:00
  • 1
    Sneaky @Boud cheated and read the "words" in OP's post /shakes_head – piRSquared Mar 29 '17 at 19:00
5

You need a backward sum, therefore reverse your series before sum rolling it:

lambda x: x[::-1].rolling(window=3).sum()
2

Rolling backwards is the same as rolling forward and then shifting the result:

x.rolling(window=3).sum().shift(-2)
1
  • You need to use apply as in Psidom's answer, or it will shift across groups. – Dan May 6 '20 at 18:39
0
def reverse_rolling(series, window, func):
    index = series.index
    series = pd.DataFrame(series.iloc[::-1])
    series = series.rolling(window, 1).apply(func)
    series = series.iloc[::-1]

    series['index'] = index
    series = series.set_index('index')
    return series[0]

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